ScholarGate
עוזר

השוואת שיטות

סקרו את השיטות שבחרתם זו לצד זו; שורות שבהן יש הבדל מודגשות.

חוויית מובייל ממקורות מרובים×איסוף נתוני חיישנים×
תחוםמתודולוגיית סקריםמתודולוגיית סקרים
משפחהProcess / pipelineProcess / pipeline
שנת המקור2000s–2010s1990s–2000s (widespread deployment with IoT ~2000s)
הוגה השיטהDeveloped from ESM (Csikszentmihalyi & Larson, 1983) and extended to multi-informant intensive longitudinal designs by Bolger, Laurenceau, and colleaguesMultidisciplinary; sensor networks formalized in engineering and computer science from the 1990s onward
סוגIntensive longitudinal multi-informant data collection techniqueQuantitative / mixed data collection technique
מקור מכונןBolger, N., & Laurenceau, J.-P. (2013). Intensive Longitudinal Methods: An Introduction to Diary and Experience Sampling Research. Guilford Press. ISBN: 978-1462506781Chong, C.-Y., & Kumar, S. P. (2003). Sensor networks: Evolution, opportunities, and challenges. Proceedings of the IEEE, 91(8), 1247–1256. DOI ↗
כינוייםmulti-informant ESM, dyadic ESM, multi-respondent ecological momentary assessment, MSESMsensor measurement, instrumented data collection, physical sensor logging, IoT data collection
קשורות65
תקצירMulti-source Mobile Experience Sampling extends the standard ESM design by simultaneously collecting repeated momentary self-reports from two or more linked informant types — such as patient and caregiver, employee and supervisor, or partners in a dyad — via their smartphones. Signals are delivered concurrently across sources, enabling researchers to examine convergences and discrepancies between informants' real-time experiences and to model interpersonal dynamics at the moment they unfold in daily life.Sensor data collection uses physical or digital instruments to automatically capture quantitative measurements from the environment, human bodies, or machines over time. Common sensors measure temperature, motion, heart rate, location, light, sound, or chemical properties. Because the recording is automated and continuous, the method can produce high-frequency datasets with minimal researcher burden, making it central to IoT, environmental monitoring, wearable research, and behavioral studies.
ScholarGateמערך נתונים
  1. v1
  2. 2 מקורות
  3. PUBLISHED
  1. v1
  2. 2 מקורות
  3. PUBLISHED

מעבר לחיפוש הורדת מצגת

ScholarGateהשוואת שיטות: Multi-source Mobile Experience Sampling · Sensor Data Collection. אוחזר בתאריך 2026-06-15 מתוך https://scholargate.app/he/compare